计算机科学
人工智能
机器学习
内存占用
多任务学习
深度学习
任务(项目管理)
多样性(控制论)
人工神经网络
特征学习
任务分析
代表(政治)
操作系统
政治学
政治
经济
管理
法学
作者
Simon Vandenhende,Stamatios Georgoulis,Wouter Van Gansbeke,Marc Proesmans,Dengxin Dai,Luc Van Gool
标识
DOI:10.1109/tpami.2021.3054719
摘要
With the advent of deep learning, many dense prediction tasks, i.e., tasks that produce pixel-level predictions, have seen significant performance improvements. The typical approach is to learn these tasks in isolation, that is, a separate neural network is trained for each individual task. Yet, recent multi-task learning (MTL) techniques have shown promising results w.r.t. performance, computations and/or memory footprint, by jointly tackling multiple tasks through a learned shared representation. In this survey, we provide a well-rounded view on state-of-the-art deep learning approaches for MTL in computer vision, explicitly emphasizing on dense prediction tasks. Our contributions concern the following. First, we consider MTL from a network architecture point-of-view. We include an extensive overview and discuss the advantages/disadvantages of recent popular MTL models. Second, we examine various optimization methods to tackle the joint learning of multiple tasks. We summarize the qualitative elements of these works and explore their commonalities and differences. Finally, we provide an extensive experimental evaluation across a variety of dense prediction benchmarks to examine the pros and cons of the different methods, including both architectural and optimization based strategies.
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